R语言机器学习学术应用培训
R语言机器学习学术应用
基础
Theory: Features of time series data and forecasting basics
R Lab: time series objects (libraries of timeSeries, xts, & mFilters)
中级
Statistical Learning (SL):
(0.5 Hour) One-step forecasting: one-step ahead model fit
(0.5 Hour) Multi-step forecasting: recursive and direct methods
(6 Hours) Linear models: ARIMAs, ETS, BATS, GAMS, Bagged; 案例实做与写作范例
(5 hours) Nonlinear models: Neural Network, Smooth Transition, and AAR; 案例实做与写作范例
R Lab: libraries of forecast, tyDyn, vars, and MSVAR.
Research Issues: unemployment forecasting, predictability of exchange rates and asset returns.
高级
Machine Learning (ML):
(3 Hours) Tree models and SVM (Support Vector Machine)
(6 Hours) Automatic ML for forecasting time series; 案例实做与写作范例,涵盖自动化演算6个机器学习方法:
(1) DRF (This includes both the Random Forest and Extremely Randomized Trees (XRT) models.)
(2) GLM
(3) XGBoost (XGBoost GBM)
(4) GBM (gradient boost machine)
(5) DeepLearning (Fully-connected multi-layer artificial neural network, not CNN/RNN LSTM)
(6) StackedEnsemble.
(6 Hours) Econometric machine learning- Causality by ML prediction; 案例实做与写作范例
(3 Hours) Financial machine learning- Portfolio committees introduced; 案例实做与写作范例
R Lab: libraries of h2o, kera, tensorflow.
Research issues: Granger causality, volatility forecasting, portfolio selection,
economic fundamentals of exchange rates